The Using of Combination Algorithm to the Gastric Carcinoma Nucleus Segmentation

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Abstract:

The nucleus segmentation of gastric carcinoma pathological section microscopic image is a challenge. Watershed and GVF model can be applied to ordinary nucleus segmentation, but each has its advantages and disadvantages. Combine two algorithms and pathology expertise. The initial contours of nucleus are achieved by watershed transformation first, and then the final contours are approaching by GVF model. Experiments show that the combined algorithm is valid.

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458-462

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January 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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